Dataset creation for supervised deep learning-based analysis of microscopic images -- review of important considerations and recommendations
Christof A. Bertram, Viktoria Weiss, Jonas Ammeling, F. Maria Schabel, Taryn A. Donovan, Frauke Wilm, Christian Marzahl, Katharina Breininger, Marc Aubreville

TL;DR
This review discusses critical considerations and best practices for creating high-quality, large-scale datasets for supervised deep learning analysis of microscopic images, emphasizing quality, variability management, and open data sharing.
Contribution
It provides a comprehensive guide and SOP for dataset creation, addressing variability, annotation quality, and promoting open datasets for pathology deep learning.
Findings
Addressing domain variability improves model robustness.
Annotation quality is crucial for model accuracy.
Open datasets foster innovation and reproducibility.
Abstract
Supervised deep learning (DL) receives great interest for automated analysis of microscopic images with an increasing body of literature supporting its potential. The development and validation of those DL models relies heavily on the availability of high-quality, large-scale datasets. However, creating such datasets is a complex and resource-intensive process, often hindered by challenges such as time constraints, domain variability, and risks of bias in image collection and label creation. This review provides a comprehensive guide to the critical steps in dataset creation, including: 1) image acquisition, 2) selection of annotation software, and 3) annotation creation. In addition to ensuring a sufficiently large number of images, it is crucial to address sources of image variability (domain shifts) - such as those related to slide preparation and digitization - that could lead to…
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Taxonomy
TopicsAI in cancer detection · Cell Image Analysis Techniques · Single-cell and spatial transcriptomics
